Augmanitai Research Lexicon (Vol. 1): A Taxonomy of Inner Human Experience in the Age of Artificial Intelligence Author: Andreas Ehstand Date: February 2026 License: CC BY-ND 4.0 (Creative Commons Attribution-NoDerivatives) Status: Version 1.0 (Public Release) Keywords: Human-AI Interaction, Phenomenology, Neuro-Semantics, Cognitive Sovereignty, Augmentation 1. Abstract without words for these experiences, humans risk a loss of interpretive authority (Volitional Atrophy). Objectives: Visibility: To render the inner experience of AI usage observable and discussable. Standardization: To provide a precision language for psychologists, sociologists, educators, and executives. Sovereignty: To strengthen human agency (Cognitive Sovereignty) through conscious conceptualization. 4. Forthcoming Research: The Whitepaper This lexicon serves as the foundational nomenclature and precursor to a comprehensive whitepaper, scheduled for release in Q2 2026. The upcoming publication, tentatively titled "Human-Algorithmic Interface Semantics (HAIS): Architectures for Sovereign Cognition", will expand upon the definitions provided here. It will offer a detailed theoretical framework, outlining the protocols (e.g., HDAR - Human-Directed Agent Relay) and neuro-cognitive architectures necessary to implement these concepts in high-performance environments. 5. Methodology: Longitudinal Field Research This document is the result of a twelve-month, intensive qualitative field study (2025–2026). The author, Andreas Ehstand, analyzed thousands of hours of human-AI interaction, focusing specifically on the feedback loops between synthetic output and biological resonance. The approach follows the phenomenological tradition: The primary metric is not the machine's performance, but the user's internal state. The codified terms are not theoretical constructs but distilled descriptions of repeatable, validated psychological states observed in high-frequency usage scenarios. 6. Authorship, Priority & Validation Andreas Ehstand is recognized as the founder of Algorithmic Rhetoric and Augmanitai Didactics. This lexicon establishes the primary terminology for these emerging fields. Proof of Origin: To ensure the integrity and authorship of this Intellectual Property (IP) in an age of generative reproduction, this work has been validated through multiple channels: Cryptographic Timestamping: Core definitions have been secured via blockchain timestamping. Digital Archiving: Pre-release versions and fragments have been indexed by the Wayback Machine (Internet Archive) and published across various platforms (Medium, LinkedIn, academic repositories) under the author's clear name. Public Record: Key concepts such as License of Clarity (LOC) are already anchored in the specialist discourse. This release on Zenodo marks the Version of Record (VoR). 7. Disclaimer & Legal Notice Non-Medical Disclaimer: This lexicon is a philosophical and sociological research work. It does not constitute medical, psychological, or legal advice. Terms describing psychological states (e.g., Reality Dystrophy) are phenomenological observations and are not clinical diagnoses according to ICD-10 or DSM-5 standards. Usage Rights: This work is licensed under a Creative Commons Attribution-NoDerivatives 4.0 International License (CC BY-ND 4.0). Permitted: Sharing, copying, and redistributing the material in any medium or format for any purpose, including commercial. Condition: Appropriate credit must be given (Andreas Ehstand, Augmanitai Research Lexicon). Restriction: If you remix, transform, or build upon the material, you may not distribute the modified material without express permission, to preserve the semantic integrity of the definitions. 8. About the Author Andreas Ehstand (StR) is an Educational AI Scientist, author, and researcher specializing in Human-Machine Interaction. His work focuses on developing frameworks that scale human intelligence through technology without compromising biological autonomy. He lives and works in Starnberg, Germany. Contact & References: Web: augmanitai.com ORCID: 0009-0006-3773-7796
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Andreas Ehstand
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www.synapsesocial.com/papers/69edac794a46254e215b433b — DOI: https://doi.org/10.5281/zenodo.18542368